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Neurocomputing 44–46 (2002) 473 – 478 www.elsevier.com/locate/neucom Sustained activity with low ring rate in a recurrent network regulated by spike-timing-dependent plasticity Katsunori Kitanoa; ∗ , Hideyuki Câteaub , Tomoki Fukaia; b a Department of Information-Communication Engineering, Tamagawa University, 6-1-1 Tamagawagakuen, Machida, Tokyo 194-8610, Japan b CREST, JST (Japan Science and Technology Corporation), 6-1-1 Tamagawagakuen, Machida, Tokyo 194-8610, Japan Abstract In order to study roles of spike-timing-dependent plasticity (STDP) at the network level, we applied STDP to a model of the cortical recurrent network. We found that STDP brought self-organization of a bistable neural activity that is essential for the working memory function. Furthermore, our simulations showed that the typical two ring patterns during the persistent activity were achieved, which depend on the time window of STDP; the short time window ( ∼10 ms) yielded an asynchronous ring activity, whereas the longer one ( ¿20 ms) produced a c 2002 Elsevier Science synchronous spike packet propagating along a chain of cell assemblies. B.V. All rights reserved. Keywords: Long-term potentiation=depression; Sustained activity; Working memory; Synre chain; Computational model In cortical and hippocampal pyramidal neurons, spike timing has important information for the synaptic plasticity [2,11]. If an excitatory postsynaptic potential (EPSP) precedes a postsynaptic action potential, the synapse exhibits long-term potentiation (LTP), whereas the same synapse undergoes long-term depression (LTD) if the timing is reversal. While the timing dependence of LTP=LTD infers their functional role in temporal coding, recent studies rather showed their implication in rate coding. Firing rate of a postsynaptic neuron is only moderately changed with presynaptic ring rate, if synapses are reorganized by the timing-dependent LTP=LTD [12,13,15]. Such ∗ Corresponding author. E-mail address: [email protected] (K. Kitano). c 2002 Elsevier Science B.V. All rights reserved. 0925-2312/02/$ - see front matter PII: S 0 9 2 5 - 2 3 1 2 ( 0 2 ) 0 0 4 0 4 - 6 474 K. Kitano et al. / Neurocomputing 44–46 (2002) 473 – 478 an activity regulation seems to be more useful in networks with recurrent excitation than in single neurons or networks with feedforward connections. The fact also implies that spike-timing-dependent plasticity (STDP) is responsible for the organization of networks exhibiting a sustained activity that has been observed in the delay period of working memory task [6 –8]. It has been known that long lasting currents such as the persistent Na+ current contribute to the maintenance of the activity with the ring rate observed experimentally, 20 –50 Hz [10,5]. However, the relation between such an activity and synaptic connectivity is poorly understood. Therefore, in order to clarify this point, we constructed the model of cortical network and introduce the STDP rule formulated by Song et al. into the excitatory recurrent connections [13]. Our network model consists of NE = 200 excitatory and NI = 50 inhibitory neurons. The dynamics of each neuron is described with the Hodgkin–Huxley equation: Cm dV=dt = −gL (V − EL ) − INa − IK − j Isyn; j + Iapp + Inoise with Cm = 3:0 F=cm2 (excitatory) or 1:2 F=cm2 (inhibitory), gL =0:14 mS=cm2 , and EL =−70 mV. The membrane time constant of the excitatory neuron and the inhibitory neuron turn to be 21 ms and 9 ms, respectively. The kinetics of the spike generating sodium and potassium channels follows those of the model by Traub et al. with gNa = 100 mS=cm2 , gK = 40 mS=cm2 , ENa = 45 mV, and EK = −80 mV [14]. The neurons are driven by the synaptic currents that arise from AMPA synapses of the excitatory neurons and from GABA synapses of the inhibitory neurons. The synaptic currents Isyn is determined by the rst-order kinetics of the gating variable. We set the activation rate =19:8, the inactivation rate =0:2 (both AMPA and GABA), EAMPA =0 mV, and EGABA =−70 mV [3]. In the present paper, we assume that only the excitatory-to-excitatory synapses show the synaptic plasticity. The conductances of this kind of synapses are initially set at a maximum value gMAX = 0:04 (measured in a unit of the leak conductance) and transiently change in the range of 0 6 g 6 gMAX through the following rule. If an interval between an EPSP by a presynaptic neuron and an action potential by a postsynaptic neuron t = tpost − tpre is positive, the conductance of the corresponding synapse is potentiated as g → g+gMAX Ap exp(−t=p ). Otherwise, g → g−gMAX Ad exp(−|t=d |). Here, Ap and Ad are the maximum amount of potentiation and depression, respectively. And p and d represent the time window of potentiation and depression, respectively. Keeping the area of LTP Ap p = 0:2 and that of LTD Ad d = 0:21, we examined two cases of the relatively short time window p = d = 10 ms and the relatively long time window p = d = 20 ms. The other types of the connections are randomly generated. The connection in a direction between a pair of neurons is adopted with the probability of 0.1, the conductance of which is set at a xed value of 0.04 (AMPA) or 0.05 (GABA). Besides, all the neurons in the network are disturbed by external noise. The noise is Gaussian white noise with the intensity that induces spontaneous ring activity with 0.5 –1:5 Hz of isolated neurons. Our interest is whether the network autonomously organizes the connectivity so as to produce a self-sustained activity with the STDP rule. Therefore, we rstly let the network run autonomously and then investigated the activity and the synaptic connectivity of the self-organized network. Fig. 1 shows the time evolution of average ring rate of the network in the self-organization process. In the early stage of the process, synaptic modication rapidly proceeded because of strong excitation due to the initial all-to-all K. Kitano et al. / Neurocomputing 44–46 (2002) 473 – 478 475 average frequency (Hz) 100 80 60 40 20 0 0 20 40 60 80 100 120 time (s) Fig. 1. Typical examples of the time evolution of ring rate averaged over the network during self-organization. Note the presence of an initial epoch showing high ring rate and a sudden fall of activity to a spontaneous discharging state. Iapp # of neurons 200 100 0 0 1000 2000 3000 4000 5000 time (ms) Fig. 2. Raster plot of the sustained activity shows the bistability of the self-organized recurrent network. The trace above the raster plot represents a depolarizing or hyperpolarizing applied current Iapp to activate or inactivate the network. Iapp =gL = 70 mV from t = 1000 to 1020 ms, and −70 mV from 4000 to 4020 ms. Otherwise Iapp =gL = 0 mV. synaptic conguration. After the stage, slow modication of the synaptic conguration was accompanied by the gradual decrease in the activity, which continued until the activity suddenly fell down to spontaneous ring level. The reason for such a transition, which occurred at 20 –30 Hz, is that the recurrent excitation becomes suciently weak so that the ‘on’-state maintained by the recurrent excitation could be disturbed by strong hyperpolarizing noise. Once the network entered the spontaneous ‘o ’-state, no signicant modication of the synapses occurred because of a very low ring rate. To examine whether the self-organized network works as working memory, we turned o the STDP rule and transiently stimulated the network. The application of a transient depolarizing current to 30% of the neurons induced the self-sustained activity with about 30 Hz. On the other hand, a transient hyperpolarizing current terminated the ‘on’-state activity (Fig. 2). As we can see, the connectivity is found to be responsible 476 K. Kitano et al. / Neurocomputing 44–46 (2002) 473 – 478 1 auto correlation # of neurons 200 100 0.6 0.4 0.2 0 -0.2 0 200 400 600 800 1000 time (ms) 2050 (a) 2100 2150 2200 0.2 cross correlation 0 2000 time (ms) 0.2 fraction in bin 0.8 0.15 0.1 0 -0.1 -0.2 -500 0.1 (b) 0 500 time (ms) 0.05 0 0 (c) 0.2 0.4 0.6 0.8 1 normalized synaptic weights g/gMAX Fig. 3. The asynchronous sustained activity obtained through the STDP rule with the short time window. (a) The self-organized network exhibits asynchronous ring in the ‘on’-state. (b) An auto-correlogram for a neuron and a cross-correlogram for a pair of the neurons show the asynchronous spiking activity. (c) The distribution of the synaptic weights. for the bistable activity, i.e., spontaneous ring ‘o’-state and self-sustained ‘on’-state. Though we demonstrated only the case of a 3 s interval of the ‘on’-state activity, the longer interval can be produced unless the external noise is intensive. The self-organization and the sustained activity mentioned above was achieved in both the case of the short time window for STDP (10 ms) and that of the long time window (20 ms). However, there was found to be some dierences in the achieved ring patterns and the self-organized synaptic connectivity. When p = d = 10 ms, Fig. 3a shows that the activity of the network in the ‘on’-state was almost asynchronous, which was tested by the spike auto-correlogram and cross-correlogram (Fig. 3b). In addition, we examined how was the achieved distribution of the synaptic weight in this case. In the single neuron study, it has been reported that STDP brought competition among the synapses terminating to an identical postsynaptic neuron so that the synaptic weights were distributed with a bimodal shape [12,13,15]. The activity regulation was accomplished through such a competitive process. However, Fig. 3c represents the continuous distribution of the synaptic weights, which means that synaptic competition occurred only weakly in this case. On the other hand, when p = d = 20 ms, cell assemblies were self-organized. The matrix of the achieved synaptic connectivity indicates that three assemblies connected as a closed loop (Fig. 4a). As shown in Fig. 4b, the synaptic competition strongly operated, which caused the bimodal distribution of the synaptic weights in this case. K. Kitano et al. / Neurocomputing 44–46 (2002) 473 – 478 477 200 0.6 150 fraction in bin index j 0.5 100 1.0 0.8 0.6 50 0.4 0.3 0.2 0.4 0.1 0.2 0 0 (a) 50 100 150 200 0 0 0 (b) index i 0.2 0.4 0.6 0.8 1 normalized synaptic weight # of neurons 200 100 0 2000 (c) 2050 2100 2150 2200 time (ms) Fig. 4. The cell assemblies formed through self-organization by STDP. (a) The weight matrix of the excitatory-to-excitatory synapses displays a closed loop structure of three cell assemblies. (b) The distribution of the synaptic weights. (c) The raster plot for the spiking activity of the network. From these results, it is found that causal and acausal relations among the neural activity were expressed as the feedforward-like structure through the competition. The raster plot displays that the activity propagated along the closed loop that consisted of the three cell assemblies (Fig. 4c). As presented above, it was found that, even at the network level, the STDP rule has the ability to organize the recurrent connections so as to regulate the activity. As a result, the two activity patterns, asynchronous spiking activity and the wave of the synchronous spike packet, were obtained. The bistable activity with the asynchronous pattern was similar to the delay-period activity observed in the prefrontal cortex during working memory task. On the other hand, the wave of the synchronous spike packet can be associated with ‘synre chain’, the feedforward neural network that propagates a packet of synchronous spikes [1,4]. Though the number of the cell assemblies was only three in our model, STDP is potentially responsible for the organization of the synre-chain-like structure [9]. 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Turrigiano, Stable Hebbian learning from spike timing-dependent plasticity, J. Neurosci. 20 (2000) 8812–8821. Katsunori Kitano received the Ph.D. degree in informatics from Kyoto University, Kyoto, Japan, in 2000. At present, he is a research fellow of the Japan Society for the Promotion of Science.